Moving region segmentation from compressed video using Global Motion Estimation by macroblock classification and Markov Random field model

K. Devi, N. Malmurugan, H. Ambika
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引用次数: 1

Abstract

In this paper, we introduce new method to segment the moving regions from compressed video by incorporating more features from different previous segmentation methods. Briefly, our method proceeds as follows. First we classify the macroblocks of the compressed video frames into different classes and we perform Global Motion Estimation and Global motion Compensation techniques to remove the influence of camera motion on the Motion Vector field from the compressed video. Then Motion vector quantization (VQ) based on similarity of local motion is used to find the likely number of moving regions. The inferred statistics are used to initialize prior probabilities for subsequent Markov Random field (MRF) classification, which produces coarse segmentation map. Finally, coarse to fine strategy is utilized to refine region boundaries. This proposed approach produces accuracy in segmentation. While each of these components has been employed in previous segmentation approaches, we believe that complete solution incorporating all of the listed components is novel and represents the main contribution of this work.
基于宏块分类和马尔可夫随机场模型的全局运动估计的压缩视频运动区域分割
在本文中,我们引入了一种新的方法来分割压缩视频中的运动区域,该方法结合了以往不同分割方法的更多特征。简单地说,我们的方法如下。首先对压缩视频帧的宏块进行分类,并采用全局运动估计和全局运动补偿技术消除摄像机运动对压缩视频的运动向量场的影响。然后利用基于局部运动相似度的运动矢量量化(VQ)来寻找可能的运动区域数。利用推断出的统计量初始化先验概率,用于后续的马尔可夫随机场(MRF)分类,生成粗分割图。最后,采用从粗到精的策略对区域边界进行细化。该方法提高了分割的准确性。虽然在以前的分割方法中已经使用了这些组件中的每一个,但我们相信包含所有列出的组件的完整解决方案是新颖的,并且代表了这项工作的主要贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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